基于梯度的机器教学算法

Pei Wang, Kabir Nagrecha, N. Vasconcelos
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引用次数: 19

摘要

研究了机器教学问题。在最优学生的假设下提出了一个新的公式,其中最优性在通常的机器学习意义上的经验风险最小化中定义。对于机器学习的学生和众包平台上的人类学生来说,这是一个合理的假设,他们的表现至少和机器学习系统一样好。结果表明,在允许无限努力的情况下,最优学生总是学习到分类任务的最优预测器。因此,最优教师的角色是选择使学生努力最小化的教学集。这被表述为一个函数优化问题,在每次教学迭代中,教师寻求对齐(1)教学集和(2)整个样本总体风险的最陡下降方向。最优的老师,表示为MaxGrad,然后显示为最大化每次迭代选择的新示例集上的风险梯度。最后给出了适用于二元任务和多类任务的MaxGrad教学算法,并证明了它与增强算法有一些相似之处。实验评估证明了MaxGrad的有效性,它在机器学习和MTurk的人类学生的分类任务上都比以前的算法要好得多。
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Gradient-based Algorithms for Machine Teaching
The problem of machine teaching is considered. A new formulation is proposed under the assumption of an optimal student, where optimality is defined in the usual machine learning sense of empirical risk minimization. This is a sensible assumption for machine learning students and for human students in crowdsourcing platforms, who tend to perform at least as well as machine learning systems. It is shown that, if allowed unbounded effort, the optimal student always learns the optimal predictor for a classification task. Hence, the role of the optimal teacher is to select the teaching set that minimizes student effort. This is formulated as a problem of functional optimization where, at each teaching iteration, the teacher seeks to align the steepest descent directions of the risk of (1) the teaching set and (2) entire example population. The optimal teacher, denoted MaxGrad, is then shown to maximize the gradient of the risk on the set of new examples selected per iteration. MaxGrad teaching algorithms are finally provided for both binary and multiclass tasks, and shown to have some similarities with boosting algorithms. Experimental evaluations demonstrate the effectiveness of MaxGrad, which outperforms previous algorithms on the classification task, for both machine learning and human students from MTurk, by a substantial margin.
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